Identification of Computer Displays Through Their Electromagnetic Emissions Using Support Vector Machines

H. S. Efendioglu, Ulas Asik, Cantürk Karadeniz
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引用次数: 1

Abstract

As a TEMPEST information security problem, electromagnetic emissions from the computer displays can be captured, and reconstructed using signal processing techniques. It is necessary to identify the display type to intercept the image of the display. To determine the display type not only significant for attackers but also for protectors to prevent display compromising emanations. This study relates to the identification of the display type using Support Vector Machines (SVM) from electromagnetic emissions emitted from computer displays. After measuring the emissions using receiver measurement system, the signals were processed and training/test data sets were formed and the classification performance of the displays was examined with the SVM. Moreover, solutions for a better classification under real conditions have been proposed. Thus, one of the important step of the display image capture can accomplished by automatically identification the display types. The performance of the proposed method was evaluated in terms of confusion matrix and accuracy, precision, F1-score, recall performance measures.
利用支持向量机识别计算机显示器的电磁发射
作为TEMPEST信息安全问题,可以捕获计算机显示器的电磁发射,并使用信号处理技术进行重建。有必要对显示类型进行识别,以截取显示的图像。确定显示类型不仅对攻击者很重要,而且对保护者防止显示危害辐射也很重要。本研究涉及使用支持向量机(SVM)从计算机显示器发出的电磁辐射中识别显示类型。利用接收机测量系统测量发射量后,对信号进行处理,形成训练/测试数据集,并利用支持向量机检验显示器的分类性能。此外,还提出了在实际条件下更好的分类方法。因此,自动识别显示类型可以完成显示图像捕获的重要步骤之一。通过混淆矩阵和准确率、精密度、f1分、召回率等指标对该方法进行评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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